Hybrid Machine Learning Model for Forest Height Estimation from TanDEM-X and Landsat Data
Researchers have demonstrated that hybrid architectures combining machine learning with physics-based constraints can resolve ambiguities in remote sensing that neither approach handles alone. By augmenting interferometric radar data with optical satellite imagery, the model disambiguates forest height from terrain effects, a longstanding challenge in geophysical parameter retrieval. This work exemplifies a broader trend in applied ML: embedding domain knowledge as inductive bias to improve generalization and interpretability, particularly valuable where labeled training data is scarce or expensive to acquire.52





















